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Membership generation using multilayer neural networkThere has been intensive research in neural network applications to pattern recognition problems. Particularly, the back-propagation network has attracted many researchers because of its outstanding performance in pattern recognition applications. In this section, we describe a new method to generate membership functions from training data using a multilayer neural network. The basic idea behind the approach is as follows. The output values of a sigmoid activation function of a neuron bear remarkable resemblance to membership values. Therefore, we can regard the sigmoid activation values as the membership values in fuzzy set theory. Thus, in order to generate class membership values, we first train a suitable multilayer network using a training algorithm such as the back-propagation algorithm. After the training procedure converges, the resulting network can be treated as a membership generation network, where the inputs are feature values and the outputs are membership values in the different classes. This method allows fairly complex membership functions to be generated because the network is highly nonlinear in general. Also, it is to be noted that the membership functions are generated from a classification point of view. For pattern recognition applications, this is highly desirable, although the membership values may not be indicative of the degree of typicality of a feature value in a particular class.
Document ID
19930009038
Acquisition Source
Legacy CDMS
Document Type
Other
Authors
Kim, Jaeseok
(Missouri Univ. Columbia, MO, United States)
Date Acquired
September 6, 2013
Publication Date
June 30, 1992
Publication Information
Publication: RICIS, Fuzzy Set Methods for Object Recognition in Space Applications
Subject Category
Computer Programming And Software
Accession Number
93N18227
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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